Senior Data Engineer - (Python & SQL)

Datatech Analytics
London
1 day ago
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Senior Data Engineer (Python & SQL)
Location London with hybrid working Monday to Wednesday in the office
Salary £70,000 to £85,000 depending on experience
Reference J13026

An AI first SaaS business that transforms high quality first party data into trusted, decision ready insight at scale is looking for a Senior Data Engineer to join its growing data and engineering team.

This role sits at the core of data engineering. You will work with data that is often imperfect and transform it into well structured, reliable datasets that other teams can depend on. The focus is on engineering high quality data foundations rather than analytics or cloud infrastructure alone.

You will design and build clear, maintainable data pipelines using Python and SQL within a modern data and AI platform, with a strong focus on data quality, robustness, and long term reliability.

You will also play an important mentoring role within the team, supporting and guiding other data engineers and helping to raise engineering standards through thoughtful, hands on leadership.

Why join
A supportive and inclusive environment where different perspectives are welcomed and people are encouraged to contribute and be heard
Clear progression with space to deepen your technical expertise and grow your confidence at a sustainable pace
A team that values collaboration, good communication, and shared ow...

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